This work proposes a novel supervised learning approach to identify damage in operating bridge structures. We propose a method to introduce the effect of environmental and operational conditions into the synthetic damage scenarios employed for training a Deep Neural Network, which is applicable to large-scale complex structures. We apply a clustering technique based on Gaussian Mixtures to effectively select Q representative measurements from a long-term monitoring dataset. We employ these measurements as the target response to solve various Finite Element Model Updating problems before generating different damage scenarios. The synthetic and experimental measurements feed two Deep Neural Networks that assess the structural health condition...
Structural condition identification based on monitoring data is important for automatic civil infras...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...
Bridges are a crucial part of the transport infrastructure network, and their safety and operational...
[EN] This work proposes a supervised Deep Learning approach for damage identification in bridge stru...
In this paper, a novel method is proposed based on a windowed-one-dimensional convolutional neural n...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
More bridges today require maintenance with age, owing to increasing structural loads from traffic a...
This thesis aims to investigate the feasibility of developing a successful unsupervised Structural H...
Engineering structures have played an important role into societies across the years. A suitable ma...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
As civil engineering structures are growing in dimension and longevity, there is an associated incre...
Rapid advances in infrastructure health monitoring and sensing technologies allow monitoring of asse...
To obtain actual conditions of infrastructure assets and manage them more efficiently, extensive res...
Design of an automated and continuous framework is of paramount importance to structural health moni...
This paper studies a machine learning algorithm for bridge damage detection using the responses meas...
Structural condition identification based on monitoring data is important for automatic civil infras...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...
Bridges are a crucial part of the transport infrastructure network, and their safety and operational...
[EN] This work proposes a supervised Deep Learning approach for damage identification in bridge stru...
In this paper, a novel method is proposed based on a windowed-one-dimensional convolutional neural n...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
More bridges today require maintenance with age, owing to increasing structural loads from traffic a...
This thesis aims to investigate the feasibility of developing a successful unsupervised Structural H...
Engineering structures have played an important role into societies across the years. A suitable ma...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
As civil engineering structures are growing in dimension and longevity, there is an associated incre...
Rapid advances in infrastructure health monitoring and sensing technologies allow monitoring of asse...
To obtain actual conditions of infrastructure assets and manage them more efficiently, extensive res...
Design of an automated and continuous framework is of paramount importance to structural health moni...
This paper studies a machine learning algorithm for bridge damage detection using the responses meas...
Structural condition identification based on monitoring data is important for automatic civil infras...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...
Bridges are a crucial part of the transport infrastructure network, and their safety and operational...